Publication | Open Access
The Many Benefits of Annotator Rationales for Relevance Judgments
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Citations
7
References
2017
Year
Unknown Venue
EngineeringIntelligent Information RetrievalMechanical TurkSemanticsRating DecisionText MiningNatural Language ProcessingComputational Social ScienceInformation RetrievalData ScienceBiasRelevance FeedbackLanguage StudiesSubjective Human RatingsContent AnalysisHuman ComputationCognitive ScienceCrowdsourcingAnnotator RationalesCrowd ComputingHuman-computer InteractionDecision ScienceLinguisticsInteractive Information Retrieval
When collecting subjective human ratings of items, it can be difficult to measure and enforce data quality due to task subjectivity and lack of insight into how judges arrive at each rating decision. To address this, we propose requiring judges to provide a specific type of rationale underlying each rating decision. We evaluate this approach in the domain of Information Retrieval, where human judges rate the relevance of Webpages. Cost-benefit analysis over 10,000 judgments collected on Mechanical Turk suggests a win-win: experienced crowd workers provide rationales with no increase in task completion time while providing further benefits, including more reliable judgments and greater transparency.
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